Predicting South Korea adolescents vulnerable to depressive disorder using Bayesian nomogram:A community-based crosssectional study  被引量:2

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作  者:Haewon Byeon 

机构地区:[1]Department of Medical Big Data,College of AI Convergence,Inje University,Gimhae 50834,Gyeonsangnamdo,South Korea

出  处:《World Journal of Psychiatry》2022年第7期915-928,共14页世界精神病学杂志

基  金:Basic Science Research Program through the National Research Foundation of Korea(NRF)Funded by the Ministry of Education,No.NRF-2018R1D1A1B07041091 and No.NRF-2021S1A5A8062526。

摘  要:BACKGROUND Although South Korea has developed and carried out evidence-based interventions and prevention programs to prevent depressive disorder in adolescents,the number of adolescents with depressive disorder has increased every year for the past 10 years.AIM To develop a nomogram based on a naïve Bayesian algorithm by using epidemiological data on adolescents in South Korea and present baseline data for screening depressive disorder in adolescents.METHODS Epidemiological data from 2438 subjects who completed a brief symptom inventory questionnaire were used to develop a model based on a Bayesian nomogram for predicting depressive disorder in adolescents.RESULTS Physical symptoms,aggression,social withdrawal,attention,satisfaction with school life,mean sleeping hours,and conversation time with parents were influential factors on depressive disorder in adolescents.Among them,physical symptoms were the most influential.CONCLUSION Active intervention by periodically checking the emotional state of adolescents and offering individual counseling and in-depth psychological examinations when necessary are required to mitigate depressive disorder in adolescents.

关 键 词:Depressive disorder NOMOGRAM Adolescents Risk factor Community-based cross-sectional study Brief symptom inventory 

分 类 号:R749.4[医药卫生—神经病学与精神病学]

 

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